Identifying and Predicting Intentional Self-Harm in Electronic Health Record Clinical Notes: Deep Learning Approach

被引:22
|
作者
Obeid, Jihad S. [1 ]
Dahne, Jennifer [1 ]
Christensen, Sean [1 ]
Howard, Samuel [1 ]
Crawford, Tami [1 ]
Frey, Lewis J. [1 ]
Stecker, Tracy [1 ]
Bunnell, Brian E. [2 ]
机构
[1] Med Univ South Carolina, 135 Cannon St Suite 405 MSC200, Charleston, SC 29425 USA
[2] Univ S Florida, Tampa, FL 33620 USA
基金
美国国家卫生研究院;
关键词
machine learning; deep learning; suicide; attempted; electronic health records; natural language processing; SUICIDE ATTEMPTS; RISK-FACTORS; METAANALYSIS; BEHAVIORS; THOUGHTS; MODEL;
D O I
10.2196/17784
中图分类号
R-058 [];
学科分类号
摘要
Background: Suicide is an important public health concern in the United States and around the world. There has been significant work examining machine learning approaches to identify and predict intentional self-harm and suicide using existing data sets. With recent advances in computing, deep learning applications in health care are gaining momentum. Objective: This study aimed to leverage the information in clinical notes using deep neural networks (DNNs) to (1) improve the identification of patients treated for intentional self-harm and (2) predict future self-harm events. Methods: We extracted clinical text notes from electronic health records (EHRs) of 835 patients with International Classification of Diseases (ICD) codes for intentional self-harm and 1670 matched controls who never had any intentional self-harm ICD codes. The data were divided into training and holdout test sets. We tested a number of algorithms on clinical notes associated with the intentional self-harm codes using the training set, including several traditional bag-of-words-based models and 2 DNN models: a convolutional neural network (CNN) and a long short-term memory model. We also evaluated the predictive performance of the DNNs on a subset of patients who had clinical notes 1 to 6 months before the first intentional self-harm event. Finally, we evaluated the impact of a pretrained model using Word2vec (W2V) on performance. Results: The area under the receiver operating characteristic curve (AUC) for the CNN on the phenotyping task, that is, the detection of intentional self-harm in clinical notes concurrent with the events was 0.999, with an Fl score of 0.985. In the predictive task, the CNN achieved the highest performance with an AUC of 0.882 and an Fl score of 0.769. Although pretraining with W2V shortened the DNN training time, it did not improve performance. Conclusions: The strong performance on the first task, namely, phenotyping based on clinical notes, suggests that such models could be used effectively for surveillance of intentional self-harm in clinical text in an EHR. The modest performance on the predictive task notwithstanding, the results using DNN models on clinical text alone are competitive with other reports in the literature using risk factors from structured EHR data.
引用
收藏
页数:16
相关论文
共 50 条
  • [1] OPTIMIZING DETECTION OF SELF-HARM IN CHILDREN AND ADOLESCENTS THROUGH ELECTRONIC HEALTH RECORD ANALYSIS AND MACHINE LEARNING
    Edgcomb, Juliet
    Tseng, Chi-hong
    Pan, Mengtong
    Klomhaus, Alexandra M.
    Zima, Bonnie T.
    JOURNAL OF THE AMERICAN ACADEMY OF CHILD AND ADOLESCENT PSYCHIATRY, 2023, 62 (10): : S361 - S361
  • [2] An emergency department medical record review for adolescent intentional self-harm injuries
    Anna Hansen
    Dessi Slavova
    Gena Cooper
    Jaryd Zummer
    Julia Costich
    Injury Epidemiology, 8
  • [3] An emergency department medical record review for adolescent intentional self-harm injuries
    Hansen, Anna
    Slavova, Dessi
    Cooper, Gena
    Zummer, Jaryd
    Costich, Julia
    INJURY EPIDEMIOLOGY, 2021, 8 (01)
  • [4] Deep Learning for Cancer Symptoms Monitoring on the Basis of Electronic Health Record Unstructured Clinical Notes
    Lindvall, Charlotta
    Deng, Chih-Ying
    Agaronnik, Nicole D.
    Kwok, Anne
    Samineni, Soujanya
    Umeton, Renato
    Mackie-Jenkins, Warren
    Kehl, Kenneth L.
    Tulsky, James A.
    Enzinger, Andrea C.
    JCO CLINICAL CANCER INFORMATICS, 2022, 6
  • [5] Identifying Intentional Self-Harm Hospitalizations when E-Codes Are Incompletely Recorded
    Patrick, Amanda R.
    Miller, Matthew
    Barber, Catherine W.
    Wang, Philip S.
    Canning, Claire F.
    Schneeweiss, Sebastian
    PHARMACOEPIDEMIOLOGY AND DRUG SAFETY, 2009, 18 : S44 - S44
  • [6] An Interpretable Deep Learning Model for the Prevention of Self-Harm and Suicide
    Kim, D.
    Cogill, S.
    Yang, S.
    ANNALS OF EMERGENCY MEDICINE, 2019, 74 (04) : S6 - S6
  • [7] Multi-site medical record review for validation of intentional self-harm coding in emergency departments
    Barbara A. Gabella
    Beth Hume
    Linda Li
    Marianne Mabida
    Julia Costich
    Injury Epidemiology, 9
  • [8] Multi-site medical record review for validation of intentional self-harm coding in emergency departments
    Gabella, Barbara A.
    Hume, Beth
    Li, Linda
    Mabida, Marianne
    Costich, Julia
    INJURY EPIDEMIOLOGY, 2022, 9 (01)
  • [9] Identifying perinatal self-harm in electronic healthcare records using natural language processing
    Ayre, Karyn
    Bittar, Andre
    Dutta, Rina
    Verma, Somain
    Kam, Joyce
    BJPSYCH OPEN, 2021, 7 : S4 - S5
  • [10] Generating Clinical Notes for Electronic Health Record Systems
    Rosenbloom, S. T.
    Stead, W. W.
    Denny, J. C.
    Giuse, D.
    Lorenzi, N. M.
    Brown, S. H.
    Johnson, K. B.
    APPLIED CLINICAL INFORMATICS, 2010, 1 (03): : 232 - 243